...
首页> 外文期刊>EJNMMI Physics >Cluster-based segmentation of dual-echo ultra-short echo time images for PET/MR bone localization
【24h】

Cluster-based segmentation of dual-echo ultra-short echo time images for PET/MR bone localization

机译:用于PET / MR骨定位的双回波超短回波时间图像的基于簇的分割

获取原文

摘要

Background Magnetic resonance (MR)-based attenuation correction is a critical component of integrated positron emission tomography (PET)/MR scanners. It is generally achieved by segmenting MR images into tissue classes with known attenuation properties (e.g., bone, fat, soft tissue, lung, air). Ultra-short echo time (UTE) have been proposed in the past to locate bone tissue. In this study, tri-modality computed tomography data was used to develop an improved algorithm for the localization of bone in the head and neck. Methods Twenty patients were scanned using a tri-modality setup. A UTE acquisition with 22-cm transaxial and 24-cm axial field of view was acquired, with a resolution of 1.5?×?1.5?×?2.0 mm3. The sequence consisted of two echoes (30 μs, 1.7 ms) with a flip angle of 10° and 125-kHz bandwidth. The CT images of all patients were classified by thresholding and used to compute maps of the posterior probability of each tissue class, given a pair of UTE echo values. The Jaccard distance was used to compare with CT the bone masks obtained when using this information to segment the UTE datasets. Results The results show the desired bony structures as a cluster pattern in the space of dual-echo measurements. The clusters obtained for the tissue classes are strongly overlapped, indicating that the MR data will not, regardless of the chosen space partition, be able to completely differentiate the bony and soft structures. The classification obtained by maximizing the posterior probability compared well to previously published methods, providing a more intuitive and robust choice of the final classification threshold. The distance between MR- and CT-based bone masks was 59% on average (0% being a perfect match), compared to 76% and 69% for two previously published methods. Conclusions The study of tri-modality datasets shows that improved bone tissue classification can be achieved by estimating maps of the posterior probability of voxels belonging to a particular tissue class, given a measured pair of UTE echoes.
机译:背景技术基于磁共振(MR)的衰减校正是集成正电子发射断层扫描(PET)/ MR扫描仪的关键组成部分。通常通过将MR图像分割成具有已知衰减特性的组织类别(例如,骨骼,脂肪,软组织,肺,空气)来实现。过去已经提出了超短回波时间(UTE)来定位骨骼组织。在这项研究中,三模态计算机断层扫描数据被用来开发一种改进的算法,用于在头部和颈部定位骨骼。方法采用三联模式对20例患者进行扫描。获得具有22cm跨轴和24cm轴向视场的UTE采集,分辨率为1.5?×?1.5?×?2.0 mm 3 。该序列由两个回波(30μs,1.7 ms)组成,翻转角为10°,带宽为125 kHz。根据阈值对所有患者的CT图像进行分类,并在给定一对UTE回波值的情况下,将其用于计算每个组织类别的后验概率图。使用此信息分割UTE数据集时,Jaccard距离用于与CT比较获得的骨罩。结果结果表明,在双回波测量空间中,所需的骨结构呈簇状。针对组织类别而获得的簇强烈重叠,这表明,无论所选择的空间分区如何,MR数据都无法完全区分骨骼和软组织。与先前发布的方法相比,通过最大程度地提高后验概率而获得的分类,为最终分类阈值提供了更直观,更可靠的选择。基于MR和CT的骨罩之间的平均距离为59%(完美匹配为0%),而之前两种方法的平均距离为76%和69%。结论对三模态数据集的研究表明,给定测量的一对UTE回波,通过估计属于特定组织类别的体素的后验概率图可以改善骨骼组织的分类。

著录项

相似文献

  • 外文文献
  • 中文文献
  • 专利
获取原文

客服邮箱:kefu@zhangqiaokeyan.com

京公网安备:11010802029741号 ICP备案号:京ICP备15016152号-6 六维联合信息科技 (北京) 有限公司©版权所有
  • 客服微信

  • 服务号